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review article

Machine learning-aided generative molecular design

Du, Yuanqi
•
Jamasb, Arian R.
•
Guo, Jeff  
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June 18, 2024
Nature Machine Intelligence

Machine learning has provided a means to accelerate early-stage drug discovery by combining molecule generation and filtering steps in a single architecture that leverages the experience and design preferences of medicinal chemists. However, designing machine learning models that can achieve this on the fly to the satisfaction of medicinal chemists remains a challenge owing to the enormous search space. Researchers have addressed de novo design of molecules by decomposing the problem into a series of tasks determined by design criteria. Here we provide a comprehensive overview of the current state of the art in molecular design using machine learning models as well as important design decisions, such as the choice of molecular representations, generative methods and optimization strategies. Subsequently, we present a collection of practical applications in which the reviewed methodologies have been experimentally validated, encompassing both academic and industrial efforts. Finally, we draw attention to the theoretical, computational and empirical challenges in deploying generative machine learning and highlight future opportunities to better align such approaches to achieve realistic drug discovery end points.|Data-driven generative methods have the potential to greatly facilitate molecular design tasks for drug design.

  • Details
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Type
review article
DOI
10.1038/s42256-024-00843-5
Web of Science ID

WOS:001249357700001

Author(s)
Du, Yuanqi
Jamasb, Arian R.
Guo, Jeff  
Fu, Tianfan
Harris, Charles
Wang, Yingheng
Duan, Chenru
Lio, Pietro
Schwaller, Philippe  
Blundell, Tom L.
Date Issued

2024-06-18

Publisher

Nature Portfolio

Published in
Nature Machine Intelligence
Subjects

Technology

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Drug Discovery

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Neural-Network

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Transformer

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Exploration

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Derivatives

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Solubility

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Strategies

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Inhibitors

•

Algorithm

•

Model

Editorial or Peer reviewed

REVIEWED

Written at

EPFL

EPFL units
LIAC  
FunderGrant Number

Schweizerischer Nationalfonds zur Frderung der Wissenschaftlichen Forschung (Swiss National Science Foundation)

180544

NCCR Catalysis

National Centre of Competence in Research - Swiss National Science Foundation

BB/M011194/1

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Available on Infoscience
July 3, 2024
Use this identifier to reference this record
https://infoscience.epfl.ch/handle/20.500.14299/209100
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